An adaptive chaotic league championship algorithm for solving global optimization and engineering design problems

Tanachapong Wangkhamhan, Jatsada Singthongchai
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Abstract

This paper introduces a novel approach to global numerical optimization through the development of an Adaptive Chaotic League Championship Algorithm (AC-LCA). Our methodology enhances the conventional League Championship Algorithm (LCA) by integrating an adaptive chaotic local search mechanism. This integration aims to improve the exploration and exploitation capabilities of the LCA, enabling it to effectively navigate complex search spaces and avoid premature convergence. Abundant experiments have been extensively executed on the well-known CEC2017 benchmark problem sets to validate the performance of AC-LCA. The results demonstrate significant improvements in convergence speed and solution accuracy over traditional LCA and several other state-of-the-art optimization algorithms. Notably, the adaptive chaotic component plays a critical role in fine-tuning the search process, contributing to the robustness and efficiency of the algorithm. The paper also investigates the application of AC-LCA to a set of five famous real-life engineering problems, showcasing its practicality and adaptability in diverse optimization scenarios. These applications further underline the algorithm's potential to address a wide range of complex optimization tasks, making it a valuable tool for researchers and practitioners in the field. Overall, the AC-LCA emerges as a promising new approach in global numerical optimization, offering a balance of innovative methodology and practical applicability.
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一种求解全局优化和工程设计问题的自适应混沌联赛冠军算法
本文通过开发一种自适应混沌联赛冠军算法(AC-LCA),介绍了一种新的全局数值优化方法。我们的方法通过集成自适应混沌局部搜索机制来改进传统的联赛冠军算法(LCA)。这种集成旨在提高LCA的探索和开发能力,使其能够有效地导航复杂的搜索空间并避免过早收敛。在著名的CEC2017基准问题集上进行了大量的实验,以验证AC-LCA的性能。结果表明,与传统的LCA和其他几种最先进的优化算法相比,该算法在收敛速度和求解精度方面有了显著提高。值得注意的是,自适应混沌分量在微调搜索过程中起着至关重要的作用,有助于提高算法的鲁棒性和效率。本文还研究了AC-LCA算法在五个著名工程实际问题中的应用,展示了其在不同优化场景下的实用性和适应性。这些应用进一步强调了该算法在解决各种复杂优化任务方面的潜力,使其成为该领域研究人员和从业者的宝贵工具。总的来说,AC-LCA是一种很有前途的全局数值优化新方法,提供了创新方法和实际适用性的平衡。
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